A Crowd Counting Framework Combining with Crowd Location

Author:

Zhang Jin1ORCID,Chen Sheng1ORCID,Tian Sen2ORCID,Gong Wenan3,Cai Guoshan4,Wang Ying5

Affiliation:

1. College of Informatica Science and Engineering, Hunan Normal University, Changsha 410081, China

2. College of Mathematics and Statistics, Hunan Normal University, Changsha 410081, China

3. Changsha Transportation Information Center, Changsha 410016, China

4. Changsha Tianxia Yida Information Technology Co., Ltd., Changsha 410221, China

5. School of Humanities and Management, Hunan University of Chinese Medicine, Changsha 410208, China

Abstract

In the past ten years, crowd detection and counting have been applied in many fields such as station crowd statistics, urban safety prevention, and people flow statistics. However, obtaining accurate positions and improving the performance of crowd counting in dense scenes still face challenges, and it is worthwhile devoting much effort to this. In this paper, a new framework is proposed to resolve the problem. The proposed framework includes two parts. The first part is a fully convolutional neural network (CNN) consisting of backend and upsampling. In the first part, backend uses the residual network (ResNet) to encode the features of the input picture, and upsampling uses the deconvolution layer to decode the feature information. The first part processes the input image, and the processed image is input to the second part. The second part is a peak confidence map (PCM), which is proposed based on an improvement over the density map (DM). Compared with DM, PCM can not only solve the problem of crowd counting but also accurately predict the location of the person. The experimental results on several datasets (Beijing-BRT, Mall, Shanghai Tech, and UCF_CC_50 datasets) show that the proposed framework can achieve higher crowd counting performance in dense scenarios and can accurately predict the location of crowds.

Funder

Education Department of Hunan Province

Publisher

Hindawi Limited

Subject

Strategy and Management,Computer Science Applications,Mechanical Engineering,Economics and Econometrics,Automotive Engineering

Reference32 articles.

1. Single-image crowd counting via multi-column convolutional neural network;Y. Zhang

2. FCHD: a fast and accurate head detector;A. Vora,2018

3. Beyond counting: comparisons of density maps for crowd analysis task—counting, detection, and tracking;D. Kang;IEEE Transactions on Circuits and Systems for Video Technology,2018

4. Deep residual learning for image recognition;K. He

5. Bayesian Poisson regression for crowd counting;A. B. Chan

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